Quantifying the Regional Disproportionality of COVID-19 Spread: Modeling Study.

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES JMIR Formative Research Pub Date : 2025-01-03 DOI:10.2196/59230
Kenji Sasaki, Yoichi Ikeda, Takashi Nakano
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Abstract

Background: The COVID-19 pandemic has caused serious health, economic, and social consequences worldwide. Understanding how infectious diseases spread can help mitigate these impacts. The Theil index, a measure of inequality rooted in information theory, is useful for identifying geographic disproportionality in COVID-19 incidence across regions.

Objective: This study focused on capturing the degrees of regional disproportionality in incidence rates of infectious diseases over time. Using the Theil index, we aim to assess regional disproportionality in the spread of COVID-19 and detect epicenters where the number of infected individuals was disproportionately concentrated.

Methods: To quantify the degree of disproportionality in the incidence rates, we applied the Theil index to the publicly available data of daily confirmed COVID-19 cases in the United States over a 1100-day period. This index measures relative disproportionality by comparing daily regional case distributions with population proportions, thereby identifying regions where infections are disproportionately concentrated.

Results: Our analysis revealed a dynamic pattern of regional disproportionality in the confirmed cases by monitoring variations in regional contributions to the Theil index as the pandemic progressed. Over time, the index reflected a transition from localized outbreaks to widespread transmission, with high values corresponding to concentrated cases in some regions. We also found that the peaks in the Theil index often preceded surges in confirmed cases, suggesting its potential utility as an early warning signal.

Conclusions: This study demonstrated that the Theil index is one of the effective indices for quantifying regional disproportionality in COVID-19 incidence rates. Although the Theil index alone cannot fully capture all aspects of pandemic dynamics, it serves as a valuable tool when used alongside other indicators such as infection and hospitalization rates. This approach allows policy makers to monitor regional disproportionality efficiently, offering insights for early intervention and targeted resource allocation.

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量化COVID-19传播的区域不相称性:建模研究
背景:2019冠状病毒病大流行在全球范围内造成了严重的健康、经济和社会后果。了解传染病如何传播有助于减轻这些影响。Theil指数是一种基于信息理论的不平等衡量标准,有助于确定不同地区COVID-19发病率的地理不均衡。目的:本研究的重点是捕获传染病发病率的区域不相称程度随时间的变化。使用Theil指数,我们的目标是评估COVID-19传播的区域不相称性,并检测感染人数不成比例地集中的中心。方法:为了量化发病率的不成比例程度,我们将Theil指数应用于美国1100天内每日确诊COVID-19病例的公开数据。该指数通过比较每日区域病例分布与人口比例来衡量相对不相称性,从而确定感染不成比例地集中的区域。结果:我们的分析通过监测随着大流行的进展,各地区对泰尔指数的贡献的变化,揭示了确诊病例中区域不相称的动态模式。随着时间的推移,该指数反映了从局部疫情到广泛传播的转变,高值对应于某些地区的集中病例。我们还发现,Theil指数的峰值往往先于确诊病例的激增,这表明其作为早期预警信号的潜在效用。结论:本研究表明,Theil指数是量化COVID-19发病率区域不均衡的有效指标之一。虽然单独的Theil指数不能完全反映大流行动态的所有方面,但当与感染率和住院率等其他指标一起使用时,它是一个有价值的工具。这种方法使决策者能够有效地监测区域不均衡,为早期干预和有针对性的资源分配提供见解。
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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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